quadrature encoding - definition. What is quadrature encoding
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NUMERICAL INTEGRATION
Gaussian integration; Gaussian numerical integration; Gauss quadrature; Gauss legendre quadrature; Gaussian Quadrature; Gauss–Lobatto quadrature; Gauss-Lobatto quadrature
  • 2}} – 3''x'' + 3}}), the 2-point Gaussian quadrature rule even returns an exact result.
  • ''n'' {{=}} 5)}}

Encoding (memory)         
  • Early LPT Mechanism
  • Hermann Ebbinghaus (1850-1909)
  • Vase or faces?
  • The mnemonic "Roy G. Biv" can be used to remember the colors of the rainbow
  • American Penny
MEMORY PROCESS
Encoding (Memory); Memory encoding; Computational models of memory encoding
Memory has the ability to encode, store and recall information. Memories give an organism the capability to learn and adapt from previous experiences as well as build relationships.
character encoding scheme         
  • Hollerith 80-column punch card with EBCDIC character set
  • 365x365px
SYSTEM USING A PRESCRIBED SET OF DIGITAL VALUES TO REPRESENT TEXTUAL CHARACTERS
Character set; Text encoding; International character set; Character code; Charset; Text encodings; Character encodings; Character sets; Legacy encoding; Character Set; Codeset; Legacy character set; Coded character set; Charsets; Coded Character Set; Character repertoire; Character encoding scheme; Character encoding form; Code character; Coded character; Code unit; Symbol set; Draft:List of computer character encodings; Character encoding system; Character coding system; Character coding; IBM Character Data Representation Architecture; Character Data Representation Architecture; IBM CDRA; CDRA; File encoding; File encodings; Convmv; Code set; Unicode encoding model; Character encoding translation; History of character encoding
character repertoire         
  • Hollerith 80-column punch card with EBCDIC character set
  • 365x365px
SYSTEM USING A PRESCRIBED SET OF DIGITAL VALUES TO REPRESENT TEXTUAL CHARACTERS
Character set; Text encoding; International character set; Character code; Charset; Text encodings; Character encodings; Character sets; Legacy encoding; Character Set; Codeset; Legacy character set; Coded character set; Charsets; Coded Character Set; Character repertoire; Character encoding scheme; Character encoding form; Code character; Coded character; Code unit; Symbol set; Draft:List of computer character encodings; Character encoding system; Character coding system; Character coding; IBM Character Data Representation Architecture; Character Data Representation Architecture; IBM CDRA; CDRA; File encoding; File encodings; Convmv; Code set; Unicode encoding model; Character encoding translation; History of character encoding
<character> The set of all characters onto which a {coded character set} maps integers (code positions). For example, consider these two simple coded character sets: Coded Character Set One: integer 0 -> the character "A" integer 1 -> the character "B" Coded Character Set Two: integer 0 -> the character "B" integer 1 -> the character "A" Both of these coded character sets map to the characters "A" and "B", so they have the same character repertoire. But since the mapping is different (and obviously incompatible), these are different coded character sets. (1998-12-17)

ويكيبيديا

Gaussian quadrature

In numerical analysis, a quadrature rule is an approximation of the definite integral of a function, usually stated as a weighted sum of function values at specified points within the domain of integration. (See numerical integration for more on quadrature rules.) An n-point Gaussian quadrature rule, named after Carl Friedrich Gauss, is a quadrature rule constructed to yield an exact result for polynomials of degree 2n − 1 or less by a suitable choice of the nodes xi and weights wi for i = 1, …, n. The modern formulation using orthogonal polynomials was developed by Carl Gustav Jacobi in 1826. The most common domain of integration for such a rule is taken as [−1, 1], so the rule is stated as

1 1 f ( x ) d x i = 1 n w i f ( x i ) , {\displaystyle \int _{-1}^{1}f(x)\,dx\approx \sum _{i=1}^{n}w_{i}f(x_{i}),}

which is exact for polynomials of degree 2n − 1 or less. This exact rule is known as the Gauss-Legendre quadrature rule. The quadrature rule will only be an accurate approximation to the integral above if f (x) is well-approximated by a polynomial of degree 2n − 1 or less on [−1, 1].

The Gauss-Legendre quadrature rule is not typically used for integrable functions with endpoint singularities. Instead, if the integrand can be written as

f ( x ) = ( 1 x ) α ( 1 + x ) β g ( x ) , α , β > 1 , {\displaystyle f(x)=\left(1-x\right)^{\alpha }\left(1+x\right)^{\beta }g(x),\quad \alpha ,\beta >-1,}

where g(x) is well-approximated by a low-degree polynomial, then alternative nodes xi' and weights wi' will usually give more accurate quadrature rules. These are known as Gauss-Jacobi quadrature rules, i.e.,

1 1 f ( x ) d x = 1 1 ( 1 x ) α ( 1 + x ) β g ( x ) d x i = 1 n w i g ( x i ) . {\displaystyle \int _{-1}^{1}f(x)\,dx=\int _{-1}^{1}\left(1-x\right)^{\alpha }\left(1+x\right)^{\beta }g(x)\,dx\approx \sum _{i=1}^{n}w_{i}'g\left(x_{i}'\right).}

Common weights include 1 1 x 2 {\textstyle {\frac {1}{\sqrt {1-x^{2}}}}} (Chebyshev–Gauss) and 1 x 2 {\displaystyle {\sqrt {1-x^{2}}}} . One may also want to integrate over semi-infinite (Gauss-Laguerre quadrature) and infinite intervals (Gauss–Hermite quadrature).

It can be shown (see Press, et al., or Stoer and Bulirsch) that the quadrature nodes xi are the roots of a polynomial belonging to a class of orthogonal polynomials (the class orthogonal with respect to a weighted inner-product). This is a key observation for computing Gauss quadrature nodes and weights.